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Transcript
Lucy Cradden et al
Energy: Renewable Generation
Infrastructure Report Card
A Climate Change Report Card for Infrastructure
Working Technical Paper
Energy: Renewable Generation
Lucy C Cradden, Atul Agarwal, Dougal Burnett and Gareth P Harrison
Institute for Energy Systems
University of Edinburgh
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Infrastructure Report Card
Table of contents - Energy: Renewable Generation
Highlights and Key Messages ..................................................................................... 3
Generation ............................................................................................................. 3
Extreme conditions ................................................. Error! Bookmark not defined.
Introduction ............................................................................................................... 3
Potential impacts of climate change.......................................................................... 4
Renewable electricity generation mix in the UK ................................................... 4
Climate impacts on renewable resources.............................................................. 6
Wind Power........................................................................................................ 6
Hydropower ....................................................................................................... 8
Solar power ...................................................................................................... 11
Wave power ..................................................................................................... 11
Bioenergy ......................................................................................................... 12
Other climate impacts on renewable generation................................................ 13
Extremes .......................................................................................................... 13
Assessment and management of risks .................................................................... 14
Impact of changing mean on cost of energy ....................................................... 14
Wind energy ..................................................................................................... 14
Solar, hydro and wave energy ......................................................................... 16
Adaptation ........................................................................................................... 17
Broader drivers and interactions ............................................................................. 19
Confidence in the science ........................................................................................ 19
Research gaps and priorities .................................................................................... 22
References ............................................................................................................... 23
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Highlights and Key Messages
Key messages
•
•
•
In general, the confidence assigned to projections of future climate change
impacts on renewable generation output is low. Particularly at the local
scales relevant to renewable energy, it is very difficult to assign certainty (or
uncertainty) to the results of models.
Even when there is moderate confidence in modelling skill, there is still a
limited amount of confidence in emissions scenarios, and it is possible that
other influences such as socio-economic factors, will have a far greater
impact on renewable energy development than climate change alone.
Consideration of climate change impacts on renewable energy without also
modelling socio-economic impacts, misses the potential to study the
interaction between climate and society and the combined influence on
future infrastructure investment and development.
Specific impacts on generation and technologies
•
•
•
•
•
For wind power, there is low-medium confidence in the climate modelling
skill, particularly with regard to the direction of change in wind speed –
increasing or decreasing. Most models agree that the scale of the impacts on
mean wind speed, and thus on wind power generation, is likely to be quite
small.
Hydropower has a complex relationship with a number of different
interacting climate variables. Several models combining the different climate
factors with future changes suggest reductions in river flows, which would
reduce production, particularly in summer.
The solar power resource is already unevenly distributed around the UK, and
appears likely to become moreso in future, with the resource increasing most
significantly in the south, and possibly reducing slightly in northern areas.
Modelling of future wave power resources is low in confidence, given the
large degree of uncertainty in various aspects of the model. The impact of
any changes on the power system as a whole is likely to be minimal, given the
small amount of generation capacity planned.Increasing frequency and
strength of extreme wind conditions would have a high impact on wind
power generation, leading to increased machine downtime - due to both
shut-downs and failures.
Both extreme flooding and drought would have a high impact on for
hydropower plant, with design conditions being exceeded in the case of
floods and reduced output in the case of drought.
Introduction
An increasing amount of renewable generation is being connected to the UK
electricity network in order to address emission reduction targets in an attempt to
mitigate climate change, and energy security needs as traditional fossil fuel reserves
become depleted delivering at least partial insulation from fluctuating global energy
prices. Many of the sources of renewable electricity are sensitive to increases and
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decreases in the mean and variability of a range of climatic parameters, and are thus
vulnerable to climate change.
A large proportion of future energy needs are expected to be met by wind power,
which is, obviously, sensitive to changes in wind speed and direction. Other major
sources of renewable electricity include hydropower, which depends on a balance of
rainfall and evapo-transpiration (a function of temperature and humidity, among
other things), and solar power, which relies on incident radiation and cloud cover.
Many of these climatic factors are projected by the current generation of climate
models to change under future scenarios, giving rise to additional uncertainty in the
future potential energy production from renewable sources. Any change in
production will have consequences for the cost of energy and thus the risk must be
carefully considered. Alongside the resources, changes to other parameters that may
affect infrastructure in general such as extreme wind speeds or flooding, could have
a major impact on renewable electricity generation. This, again, would have financial
and wider economic impacts for the energy system.
Potential impacts of climate change
Renewable electricity generation mix in the UK
Figure 1 shows the contribution of each type of generation to the total electricity
produced from renewable sources in 2012 (DECC 2013a). Hydropower is a mature
technology, having been deployed on a large scale in the post-war 1950s and 60s,
mainly in Scotland and hilly areas of Wales, and represented 13% of the total. More
recent developments tend to be smaller, ‘run of river’ schemes which do not involve
creating large dams, but as with the older projects they are most commonly situated
in mountainous regions of Scotland.
Onshore wind turbines are also a relatively mature technology, having increased
their share from around 1-2% of all electricity production in the late 1990s to around
10-12% today. Offshore wind really only gained momentum in the last 4-5 years, but
now represents around 5-7% of the total electricity produced. The distribution of
installed wind power capacity around the UK can be seen in Figure 2. In total, onand offshore wind produced nearly half of all renewable electricity in 2012.
Solar power, despite being a fairly mainstream technology in other parts of
northern Europe, such as Germany, has been relatively uncommon in the UK. The
high capital cost of photo-voltaic (PV) panels, the large areas that they require, and
the anecdotal belief that the UK is ‘not sunny enough’, perhaps contribute to this.
Wave and tidal power produced only a tiny percentage of the renewable electricity
generation in 2012. The technologies for these are still very much in their infancy,
with most of the power generated being the result of testing brand-new devices.
Bio-energy comes from a number of different sources. In 2012, it contributed 37%
of the total renewable generation, and of this, around one third each were landfill
gas and plant biomass.
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Onshore Wind
Renewable electricity generated (2012)
Offshore Wind
Shoreline wave / tidal
Solar photovoltaics
3%
Hydro
Landfill gas
0.01%
Sewage sludge digestion
Energy from waste
Co-firing with fossil fuels
13%
Animal Biomass (non-AD)
Anaerobic Digestion
12%
18%
Plant Biomass
2%
37%
6%
4%
2%
1%
29%
10%
Figure 1 Relative contribution of different renewable technologies
Figure 2 Operational wind farms (October 2013)
In total, renewables produced around 11.5% of the total electricity generated in
2012, increasing from under 3% in 2000 (DECC 2013b). Aiming to meet emission
reduction targets would suggest that that share of the total generation will increase
further in the coming decades. Determining the future contribution of renewables
very precisely is an impossible task, but National Grid have developed four ‘pathway’
scenarios representing possible generation mixes up until the 2050s in order to
model future demand and network requirements (National Grid 2014). An indication
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of the possible proportions of generation attributed to each type of fuel can be
obtained. For example, shown in Figure 3, in the ‘slow progression’ scenario for the
2030s, wind contributes 40% of the total generation, whilst around 15% comes from
the combined total of biomass, hydro, marine, solar PV and ‘other renewables’. In
the ‘gone green’ scenario for the 2030s, the proportion of wind is again around 40%,
with the combined total of biomass, hydro, marine, solar PV and ‘other renewables’
coming in at 17%. In all cases, the contribution of wind power to the national
electricity supply is clearly expected to increase significantly, whilst solar and
biomass also increase from the 2012 baseline, but not quite so dramatically. The
change in contribution of the hydro/marine/pumped storage category is much less,
perhaps indicating a lack of confidence in new marine energy technologies and a
limited
capacity
for
new
hydropower.
Figure 3 National Grid Future Energy Scenarios – contributions to generation in
2035 (National Grid 2014)
Climate impacts on renewable resources
Many of the renewable technologies are inherently dependent on climate factors;
that is, their power output is directly related to a specific climate variable. For
example, wind power production is almost entirely dictated by wind speed. The bioenergy technologies are slightly different, as they often have some climate
dependencies but do not necessarily have such a direct relationship with a single
meteorological parameter. Bearing this in mind, each technology will be discussed
separately in this section.
Wind Power
Mean wind speeds, distribution and temporal variability
As already stated, wind power production depends very strongly on wind speed, and
to a lesser extent, the direction in which it is blowing. Wind turbines are based on
fundamental physics which state that the power density available from the wind (P,
W/m2) is a function of the wind speed (U, m/s), such that:
1
P = ρU 3
2
3
where ρ is air density (kg/m ) (Manwell et al. 2002). This cubic relationship suggests
that small changes in wind speed could have a proportionately larger impact on wind
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power availability. Changes that affect the mean wind speed in a particular location
would therefore be expected to influence the power generation and possibly the
finances of a wind farm.
Wind turbines, due to further complexities of the laws of physics, can extract a
maximum of 56% of this available power – known as the Betz limit (Manwell, et al.,
2002). In practice, the expected power produced by a turbine at a given incoming
wind speed can be calculated using a ‘power curve’. A typical power curve for a
Vestas V90 3MW wind turbine is shown in (Vestas Wind Systems A/S. 2004) (left),
indicating that, for example, the turbine will start producing power when the wind
speed reaches around 3 m/s, will produce around 50% of its rated capacity at 10 m/s
and will reach its full rated power at 15 m/s. The turbine will cut out and stop
producing power at speeds greater than 25 m/s to prevent damage to the turbine in
these very high wind speeds.
Figure 4 Power curve (left) and wind speed distribution (right) (Harrison et al. 2008)
The proportion of time that the wind at a particular location is blowing at a given
speed is shown in a typical distribution, presented in the right-hand panel of Figure
4. A change in the characteristic distribution shape will lead to a different sum total
of energy generated over a given period of time. For example, if the ‘tail’ of the
distribution was to shift further out to the right, more extremely high wind speeds
within the ‘cut-out’ region of the turbine power curve might be expected.
Variability at a short time scale is typically the most problematic aspect of
managing wind generation output, and so any increase in the degree of variation
could be detrimental. Conversely, obviously, a reduction in variation would probably
be considered a beneficial change. The seasonal pattern currently follows expected
consumer demand – i.e. lower in summer and higher in winter. The consequences of
a change in the seasonal pattern would be judged in the context of any concurrent
changes in demand patterns. For instance, an increase in output in winter would be
advantageous if electric heating were to become more prevalent, whilst a decrease
in summer output would be detrimental if air conditioning were more commonly
used.
Climate modelling evidence for future changes in mean, distribution and variability
Extensive work has been carried out by Pryor et al. (2005a, 2005b) looking at
potential impacts of climate change on wind speeds in the Baltic Sea area. There are
some indications of a potential strengthening in winter wind speeds, but a key
message is that the results are considered to be highly uncertain. In a later review of
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climate change impacts specifically related to wind energy (Pryor and Barthelmie
2010), the same authors conclude that on the basis of the evidence in the literature,
the future changes projected with current models are unlikely to have a discernable
effect on wind power generation.
Looking specifically at climate change impacts on wind energy in the UK, two
studies (Harrison et al 2008; Cradden et al. 2012), using two independent models
found some evidence of a strengthening seasonal wind speed pattern – increases in
winter, decreases in summer – that could lead to impacts on the expected power
output in these seasons. The authors stated similar concerns as Pryor and Barthelmie
regarding the high degree of uncertainty in the results. Similar differences were
found between model simulations of current climate and actual measurements as
between simulations of current and future climate. This indicates a low degree of
confidence that changes observed in the future simulations are statistically
significant.
Spatial distribution and variability
An interesting aspect of future changes in wind speeds might relate not just to
average resources, but to the spatial patterns of the resource. From day-to-day,
spatial distributions of wind speeds depend on the weather systems affecting the
country, with the dominant patterns leading to higher average wind speeds in
northerly and westerly areas of the UK. This dominant pattern is driven by a storm
track bringing in areas of low pressure from the Atlantic, which tend to follow
broadly similar paths across the country.
A shift in the storm track paths or in the strength of the driving forces would lead
to a change in the spatial distribution of wind speeds around the country. The
expected generation from the existing wind farm configuration as shown in Figure 2
would change, with perhaps different areas of the country having more suitable
resources. This could result in a different evolution of optimal wind turbine sites over
the coming century, and this would be potentially wasteful in terms of the
requirement to decommission existing sites and reposition infrastructure. There is
some evidence to suggest that the paths of incoming Atlantic storms may change
under future climate change scenarios – ‘a shift in the storm track’ (Jiang and Perrie
2007).
Hydropower
Among all of the renewable technologies hydropower has been most extensively
assessed largely due to its major global contribution to energy supply. Hydropower
exploits the potential energy of water falling over a vertical height (or head) with the
available power (W) given by:
P = ρgHQ
3
where ρ is water density (kg/m ), g is gravitational acceleration (9.81 m/s2), H is the
head (m) and Q is the flow rate (m3/s). For any given hydro scheme power
production is determined by river flow rates which vary substantially within the year
and year-to-year. Smaller catchments, particularly those in mountainous areas may
experience variability on much shorter time scales.
The design of hydro schemes (particularly run-of-river and to a lesser extent
storage relies on a form of cumulative probability distribution: the flow duration
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curve. The production at a hydro scheme is limited by its maximum (rated) and
minimum flows through the turbines together with specified flow rates that bypass
the scheme (compensation flow, typically the 90th or 95th percentile flow). Figure 5
gives an example of a flow duration curve showing a potential change between
current and future flow regimes. The shaded areas indicate the gross energy
potential which changes with the flow patterns.
Figure 5 Example flow duration curve and energy generation for current and future
climate
The flow in the river at any instant is determined by the catchment area as well as
the water balance, a function of precipitation, evapotranspiration and any water
entering or leaving long term storage. Changes in the volume and timing of
precipitation will therefore serve to alter river flows. The literature highlights a
tendency for catchments to ‘amplify’ changes in precipitation with substantially
greater changes in river flow (Mukheibir 2013). In part this relates to the level of soil
moisture with saturated soils promoting faster runoff. The composition of
precipitation also has a substantial impact with snow cover playing a major role in
regulating winter and spring flows in many hydro-rich catchments around the world:
whether precipitation falls as rain or snow and the extent of melt depend very
strongly on temperature.
Evapotranspiration also plays a major role, particularly in warmer climates.
Potential evapotranspiration is a complex function of temperature, radiation,
humidity, wind speed and other variables. In a warmer climate the rate of
evaporation will increase along with the ability of the atmosphere to hold the water.
Actual evapotranspiration depends not only on the potential but also the availability
of moisture in soils and water bodies. Evidence from climate models suggests
substantial seasonal changes in soil moisture levels.
The sheer number of climatological mechanisms that regulate river flow suggests
that hydropower is vulnerable to a changing climate. Much of the literature on
climate impact on hydropower is for overseas locations with large hydropower
facilities and relative importance for energy supply, particularly North America (e.g.,
Weyman and Bruneau 1991; Minville et al. 2009) and Africa (e.g., Reibsame et al.
1995; Harrison and Whittington 2002). In the UK as a whole hydro now has a more
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modest role hence few studies in contrast to substantial amounts of climate impact
studies focussed on hydrology (e.g. Fowler and Kilsby 2007), water resource systems
(Fowler et al. 2007) and reservoir safety (Babtie Group 2002). A key finding from
international studies is that the ssensitivity of hydropower production to changes in
climate increases significantly as the amount of storage declines; this would imply
that the larger storage-based hydropower would be inherently less susceptible than
smaller low-head run-of-river schemes elsewhere.
Harrison (2005) examined the impact on a potential low-head mini-hydro scheme
on the River Teviot in the Scottish Borders. Using a simple software suite simplified
from Harrison and Whittington (2002), the catchment hydrology, scheme operation
and economics were modelled. The use of the UKCIP02 scenarios for 2020 suggested
that use of uniform changes underestimates the extent of change with substantially
larger drops in summer flows than increases in winter flows. The characteristics of
the scheme resulted in summer production falling by over 20% and a negligible
increase in winter production. In production terms, the turbine capacity limit means
that virtually no additional power is produced during the winter relative to current
conditions. However, the significant drops in summer flows mean that the scheme is
idle for more of the season and consequently summer production drops by over a
fifth. Fortunately, the larger potential in winter means that annual production is
impacted to a lesser degree although the drop is still appreciable.
A more recent study by Duncan (2014) applied the UKCP09 Weather Generator to
sophisticated hydrological models of five representative catchments in Scotland.
Examining the flow probabilities for baseline (1961-1990) and the 2050s (20402069), the range of flows bounded by the 10% and 90% probabilities are shown in
Figure 6 for the River Ewe. Observed data was found to be in line with modelled
baseline flow duration curves, giving confidence that the weather generator and
hydrological model will produce plausible flow duration curves for future climate. It
is also clear that there is an increase in magnitude of flows at the higher percentiles
and a significant decrease in baseflows. This would be consistent with other findings
that increased storm events will drive large storm response while greater
evapotranspiration will reduce summer low flows. The impact on a hypothetical 16
MW hydro scheme was also modelled with results indicating that capacity factors
would drop with significant falls in the summer. Slightly higher capacity factors are
seen in winter albeit constrained by the turbine rating and design flow.
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Figure 6 Flow duration curves for River Ewe for baseline and 2050s climate
(Duncan, 2014)
Solar power
Solar energy is the most abundant renewable energy source available on Earth. It
presently counts for a relatively small proportion of generated energy, but growing
concerns over climate change have helped stimulate a marked growth in
implementation over recent years and is expected to dramatically increase as solar
technologies mature and costs significantly reduce.
Solar energy can be affected by changing cloud cover characteristics (Crook et al.
2011;(Pan et al. 2004). Human activity can cause a change in atmospheric particles
(aerosols) that in turn impact cloud cover by increasing (or decreasing) the volume of
cloud condensation nuclei. Solar irradiance levels reaching the surface of the earth
are dependent on cloud cover, and will therefore be impacted by climate change.
The impact of climate change on solar energy has been explored to some degree.
Gueymard and Wilcox (Gueymard and Wilcox 2011) investigate the long term solar
resource in the U.S. and highlight the seasonal changes in the solar resource. Pan et
al. (Pan et al. 2004) uses a regional climate change model with results suggesting
that seasonal irradiance in the US may decrease by up to 20% by the end of the
2040s.
Burnett et al. (2014) characterises the UK solar resource to provide a detailed
assessment of the baseline climate which is combined with UKCP09 probabilistic
output to allow the effect of Climate Change to be explored and to estimate the
future UK solar resource at a regional and local scale. In brief, the results show an
overall increase in resource over the UK, especially in more southern and southwesterly locations. However, there will be increased seasonal variability in many
areas, more notably in southern regions. It is expected that present regional
differences in solar resource will be further increased in the future with most
southerly regions getting sunnier and benefiting from increased solar energy
resource in summer, while the relatively poor northerly resources will decrease
slightly. In winter most regions will witness increased cloud cover and slightly
reduced solar energy resource.
The expectation is that all types of solar energy system will be affected: solar
photovoltaics (PV), solar water heating and solar thermal generation, of which the
first two are relevant to the UK. Differences between technologies will occur given
the differing spectral absorbance characteristics between solar water heating panels
and PV cells of differing types. Additionally, their response to changing temperature
differs: PV panel efficiency degrades as ambient temperatures rise while solar water
heating efficiency improves.
Wave power
Wave energy converters (WECs) rely on wind generated waves for their operation.
As the name suggests these waves are formed by the interaction of the wind with
the ocean surface. Waves observed at a location have a seemingly random
appearance because they are, in fact, a large number of harmonic waves of different
amplitudes, periods, directions and phases interacting with each other (Holthuijsen
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2007). These individual waves may be generated great distances away from the
location of the observer, from which it may be inferred that the wave climate of a
region is more complex than the simple interaction of local winds with the water
surface. For example, the wave climate on the western coast of the UK is greatly
influenced by waves, especially swell, generated in the middle and the western
regions of the North Atlantic.
A time-series of surface elevations (or waves) can be transformed into an energy
variance spectrum from which important parameters describing the sea state like
significant wave height (H s ) and energy averaged wave period (T e ) may be obtained.
From these parameters, the power flux (in kW per meter of wave front) can be
calculated empirically as:
P = 0.49H s 2T e
The wave climate is likely to change as a direct consequence of changes in wind
patterns. The increase in the roughness of waves in the North Atlantic has been
discussed for over three decades (e.g. Neu 1984; Carter and Draper 1988) . It is
reasonable to expect that these variations in the marine climate, whether climate
change driven or otherwise, will have some effect on electricity generation by WECs.
A study of the Wave Hub site in Cornwall (Reeve et al. 2011), forced with wind
corresponding to the IPCC A1B (intermediate emissions) and B1 (low emissions)
scenarios, suggested that there was likely to be an overall decrease in the wave
power conversion by WECs by 2-3%. It indicated that there was likely to be a 2.95%
increase in the mean available wave power for the A1B scenario along with a wider
spread of incident wave heights and a 2.27% decrease for the B1 scenario. The
decrease in power conversion was attributed to the fixed performance
characteristics (often presented as a power matrix) of WECs because of which they
may not be able to convert the additional power. Other studies linking the variability
in wave climate to the North Atlantic Oscillation (NAO) have yielded similar results
(Mackay et al. 2010).
Bioenergy
The likely effects of climate change on bioenergy could fall into two areas. The first is
related to the fact that the typical thermal power generation cycle is, in theory,
sensitive to ambient temperature. Higher ambient temperatures would raise the
temperature of the ‘cold sink’ part of the typical Rankine cycle which describes the
generation of steam from combustion of a fuel, i.e. the cooling water or air will have
a higher temperature and be less effective as a coolant. Thus, increasing
temperatures might be expected to reduce the efficiency of all steam-driven thermal
power plants including biomass combined heat and power, energy from waste. A
study (Förster and Lilliestam 2010) based on a hypothetical nuclear plant located in
central Europe, but applicable to any river-cooled thermal plant, showed that
concurrent increases in river temperature and decreases in river flow could impact
quite significantly on power production. Given that the UK’s current characteristic
weather is cooler and wetter than central Europe, it might be expected that future
changes might push production patterns towards those currently experienced in
hotter, drier climates.
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The second, and possibly more serious, consequence of climate change for
biomass-fuelled generation is the effect that changes in weather parameters might
have on the growing cycle of biofuel crops.
The impacts arise from a number of factors. Firstly, there is evidence that crop
yields will improve in elevated levels of atmospheric CO 2 . Changes in solar radiation
will directly influence the available energy for photosynthesis. Rainfall and
temperature are critical for determining soil moisture levels that are key to yields. In
addition rainfall and temperature levels are key in the ripening and drying processes,
affecting harvest timing and also crop moisture levels, with high levels detrimental to
the calorific value of crops. Temperature is also important in regulating growth with
frost depth and frequency an important factor in mortality and yield.
A report analysing maize production in the US suggests that an increase in the
variation seen in temperature and precipitation would lead to subsequent variation
in biofuel production (Hatfield and Singer 2011). Managing the uncertainty resulting
from this is a key issue for the industry. Bellarby et al. (2010) use a model to project
changes in the suitability of different areas of the UK for growing different types of
biofuel crops. The authors note that the model is fairly simple and the assumptions
made create associated uncertainties, but indications are given that certain crops,
such as willow, which are currently popular as biofuels in the UK, may become less
suitable under future climate conditions. An additional factor to consider under
changing climate is the migration of crop pests and pathogens (Bebber et al. 2013).
Much of the analysis produced to date has focussed on specific energy crop
yields, with limited information on impacts on secondary bioenergy (wastes and
residues), wider supply chains or economic impacts. An increasing amount of
biomass currently being used for UK energy production is sourced from overseas. As
such, the impact of climate change on the physical supply of material from overseas
as well as issues raised by the ‘food versus fuel’ debate will be relevant.
Other climate impacts on renewable generation
Extremes
A major consideration for future climate change scenarios is the potential for
increased frequency of extreme weather events. All infrastructure, including
renewable energy plant, is vulnerable to extreme wind speeds, extended or reduced
periods of precipitation and very high or low temperatures.
Sea-level rises are a widely predicted impact of climate change that could have a
direct effect on some areas of renewable generation. Co-fired or biomass plant that
is coastally located could be subject to inundation during high tides. An additional
factor to consider for coastal thermal plant is the predicted rise in sea water
temperatures, reducing the cooling efficiencies of the plant. Tidal generators, whilst
not dependent on climate factors, are potentially vulnerable to resource changes
linked to sea-level rises. The potential for changes to the tidal constituents due to
sea-level rise is described in (Pickering et al. 2012), and does indicate that if a large
degree of sea-level rise were to occur, changes in tidal characteristics around the UK
would be expected. Additional factors affecting tidal generators might be changing
meteorological drivers for ocean currents and temperature changes.
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In very high wind conditions, wind turbines will stop producing power and turn
away from the prevailing direction in order to prevent damage to the machine. More
frequent and more persistent storms would increase the amount of ‘lost’ energy due
to this process. The fatigue loading on the blades and tower structure would also be
increased in this situation. Stormy conditions over the sea which cause large swell
waves present a danger to wave and tidal energy devices in exposed locations, again,
with increased frequencies and more prolonged events causing greater damage and
loss of generation.
When rainfall (or snowmelt) rate exceeds the rate of drainage, flooding will occur.
Prolonged periods of precipitation (either rain, or snow which later melts quickly)
onto saturated ground present a high risk to all assets and infrastructure, including
renewable generation plant. For hydropower, extreme flooding can lead to the
spillways exceeding their design limits, whilst run-of-river plant will suffer
inundation. The opposite situation of more frequent extreme drought conditions are
also likely to affect thermal plant that uses cooling water from rivers most seriously,
and also, obviously, hydropower generation will be affected.
Extremes of low temperature present a potential risk to wind turbine blades,
causing icing (Pryor and Barthelmie 2010), and freezing of rivers would likely reduce
hydropower output during critical cold spells when demand is at a peak. High
temperatures present most risk to thermal plant operation, affecting cooling
water/air temperatures and reducing efficiencies.
Survivability of any marine energy technology, i.e. wave energy converters and
offshore wind and tidal turbines, in the marine environment is a critical
consideration in project planning. It was found in (Reeve et al. 2011) there is likely to
be an increase in the occurrence of extreme waves at the Wave Hub site for the
future scenarios. This is in accordance with the findings of (Perrie et al. 2004), which
showed that climate change is likely to slightly increase the wave heights generated
in large storms.
Assessment and management of risks
Impact of changing mean on cost of energy
This section addresses the potential for climate change to affect the cost of energy.
The most sophisticated and up-to-date probabilistic climate modelling framework for
the UK is provided by the UK Climate Impacts Programme (UKCP09). They offer a
number of different ways of accessing and analysing data for future climate change
scenarios at different levels of detail (UKCP09 2012) for a range of potential
applications. Where possible, UKCP09 data has been used here to carry out the
future analyses, but varying assumptions for baseline climate have been applied and
are described further in the cited references.
Wind energy
For wind speeds, the provision of data by UKCP09 is more limited than other
variables, due to lower confidence in the output (Sexton and Murphy 2010). Two
possible sources are available:
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•
monthly cumulative distribution functions (CDFs) of projected change under
different emissions scenarios for individual points on the 25km resolution UK
grid;
• output from an 11-member ensemble run of the HadRM3 regional climate
model which provides spatially coherent daily and monthly mean wind speeds
for baseline and future scenarios over the whole UK grid
The range of changes in surface wind speeds projected in the UKCP09 model
summarised in (Sexton and Murphy 2010) are relatively small, and for the most part,
span both positive and negative changes. Figure 7 shows some of the percentage
changes in wind speeds in the 2050s found from the 11 runs of the HadRM3
ensemble at the 50% probability level for a ‘medium’ emissions scenario. August and
November have been identified as having the most extreme changes, and are shown
alongside the change in the annual mean. In terms of the spatial differences in wind
speed changes, Figure 8 illustrates that the model is predicting the most severe
decreases in wind speeds in August with some more modest increases in November,
with a similar pattern appearing to affect most sites.
To translate the changes in wind speed into impacts on wind energy output, the
wind speeds from the 11-run HadRM3 ensemble have been used to derive baseline
and future UK wind generation scenarios based on the locations of existing wind
farms and their capacities. The future values of the levelised cost of energy (LCOE)
from wind have then been derived using the method described in (DECC 2012).
Figure 7 Wind speed change (%) for 2050s medium emissions scenario with 50%
probability
Figure 8 Climate change impact on wind speeds at geographically spaced locations
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The overall impact of the wind speed changes on the LCOE is shown in Table 1. The
figures are broken down into groups representing the current onshore capacity,
offshore capacity from the Crown Estate Leasing Round 2, and the Crown Estate
Leasing Round 3. It can be seen that the direction of changes is highly uncertain,
being typically positive at the 10% probability level and negative at the 90%. The
magnitude of the changes is relatively small at the 50% probability level, but the
more extreme changes are more significant. The geographic spread of changes is
such that the current northern preference is further enhanced, with some slight
decreases in LCOE in the future whilst the south east of England sees some future
increases in LCOE as the wind output reduces.
Table 1 Climate change impact on UK wind energy LCOE – change in £/MWh
Emission Scenario
Low
Medium
High
Baseline
Climate 10% 50% 90% 10% 50% 90% 10% 50%
Onshore
5.51 0.47
84.31
5.24 0.71
5.24 0.71
Wind
3.14
2.93
Offshore
115.69 9.64 2.19
10.37 2.5
10.37 2.19
R2
3.56
3.56
Offshore
117.30 6.51 1.19
7.17 1.49
7.17 1.19
R3
2.87
2.87
All
116.62 7.83 1.61
8.52 1.92
8.52 1.61
Offshore
3.17
3.17
All Wind 114.69 7.67 1.55
8.31 1.83
8.33 1.53
3.19
3.17
90%
3.36
3.85
3.15
3.45
3.47
Solar, hydro and wave energy
A simple study to assess the sensitivity of wave energy to changes in wind (Harrison
and Wallace 2005) revealed that variations in the mean annual wind speed had an
effect on not only the significant wave height and energy period (and therefore
power), but also on other aspects related to the performance of wave energy
projects. The summary from (Harrison and Wallace 2005), which used the Pelamis
wave energy converter as a case study are presented in Table 2:
Table 2 Summary of results from (Harrison and Wallace 2005) relating wave energy
project performance with changes in mean annual wind speed.
Measure
Annual mean wind speed change
-20%
-10%
10%
20%
Mean H m0 (m)
1.73
2.19
3.27
3.88
Mean T e (s)
5.00
5.63
6.88
7.50
Mean wave power (kW/m)
27.5
49.5
134.4
205.6
Mean output (kW)
134.4
183.8
279.4
322.5
Production (GWh/yr)
1.18
1.61
2.45
2.83
Load Factor (%)
17.9
24.5
37.3
43
Time at idle (%)
48.7
41
29.7
25.7
At capacity (%)
0.9
2.4
8.2
12.2
IRR (%)
2.45
6.18
12.16
14.63
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Unit cost (p/kWh), 8% discount rate 9.43
Unit cost (p/kWh), 15% discount 14.68
rate
6.89
10.74
Infrastructure Report Card
4.54
7.06
3.93
6.12
In a similar manner to the previous results presented for wind, levelised costs were
calculated using a method leveraged from (Mott MacDonald 2010) and described in
full in (Burnett 2012) for solar, hydro and wave power. Baseline values are derived
from a number of sources (wave: (Allan et al. 2011), solar: (International Energy
Agency 2010) hydro: (Mott MacDonald 2010)) and future climate change applied
using UKCP09 outputs (hydro – weather generator, solar – probabilistic framework,
wave – using HadRM3 wind combined with the methodology described in (Harrison
and Wallace 2005). The results are shown in Table 3. It should be highlighted that the
baseline numbers are calculated using more tentative assessments of capacity factor
than the wind figures from Table 1, and cover only a single emissions scenario.
Table 3 Climate change impact on UK solar, wave and hydro energy LCOE – change
in £/MWh
Emission Scenario - 2050
Low
Medium
High
Baseline
Climate 10% 50% 90% 10% 50% 90% 10% 50% 90%
Hydro
83.2
97.9 87.6 77.4
Wave
193.0
211.5 198.4 187.8
Solar
237.7
239.2 230.8 222.4
Summary
In this section, some tentative assessment of the potential for climate change to
influence the levelised cost of renewable energy has been presented. It must be
highlighted that the timescales considered from the point of view of climate
modelling are quite long – perhaps 30-40 years from now – and there is generally
low confidence in the results. Investment decisions are typically made on the basis of
shorter periods of around 20-30 years and thus climate change is unlikely to have an
impact on investment decisions, at least until the modelling skill at shorter
timescales is improved. Other influences, for example, the wider political context,
are likely in the short term to have much greater impact. The introduction of policy
mechanisms that incentivise renewable generation could have a larger effect on the
financial viability of a development than (uncertain) changes in climate variables.
It is important to note that socio-economic influences on renewable energy
cannot be considered in isolation from climate change. For example, sudden obvious
changes in climate (or lack thereof) over the coming decades could influence the
prioritisation of renewables development relative to more carbon-intensive energy
sources. The combined effect of this is likely to be more important for investment
decisions than climate variables alone.
Adaptation
Adaptation to climate change can take many forms, depending on the severity and
nature of the changes that occur. Mukheibir (2013) categorises types of adaptation
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into a range of different responses, indicating factors including the timeframe, and
coverage and drivers of different adaptations.
It is impossible to say for certain what the future will look like, and so the
potential for adaptation to future conditions can be built in to the machine design –
for example, new wind turbine designs have less severe responses to extremely high
wind speeds and rather than shutting down completely, will gradually turn away
from the prevailing wind and reduce output gradually. This reduces yield losses
associated with high wind conditions (Enercon 2014). Similarly, many WECs are
‘tuned’ to produce their maximum output in the most frequent types of sea-state
occurring where they are located. Re-tuning the control system to different
prevailing conditions may be necessary under climate change scenarios (Reeve et al.
2011). Alteration of hydropower reservoir operating rules is likely to be necessary in
a changing climate (Weyman and Bruneau, 1991, Minville et al, 2009).
More major site-specific adaptations may be necessary in the case of
hydropower, for instance raising dam walls and enhancing spillway capacity to cope
with additional flood waters or uprating the capacity of turbines (Harrison, 2005;
Duncan 2014), Similarly, for bioenergy, it may become necessary to change the type
of crop used in order to obtain maximum yield under different temperature and
precipitation conditions.
The already significant variability in renewable output requires careful
management by the network operators to ensure demand is met. In the case of an
increase in this variability due to climate change effects, it would seem sensible to
invest in two areas – improved short and medium-term weather forecasting, and
efficient and cost-effective storage facilities. Forecasting of wind speeds is generally
good in the very short term, but can be very difficult over time periods greater than
2-3 days. Research is required to improve the modelling skill in this area. Many
storage technologies are in development and may prove suitable to provide a
‘buffer’ to reduce the dependence on responsive fossil-fuel plant as back-up
generation. ‘Virtual power plant’ and demand management may also provide similar
facilities.
In the case of wind power, which might be expected to contribute most of all the
renewables to the future electricity system, the highest likelihood scenarios appear
to feature only small changes in wind speeds and thus fairly small changes in wind
energy output would be expected. Short-term adaptation measures would thus
appear to be unnecessary. The existing spatial pattern of higher generation
potential in the north and west of the UK appears, within the UK HadRM3 model at
any rate, to persist and thus major adjustments to the configuration of capacity
would not be required in future. However, this is not the only model, and as
indicated, the uncertainty is very high.
Given the high degree of uncertainty associated with climate change projections,
it would be prudent to consider adaptation in a wider sense, and ensure the system
is designed to have sufficient adaptive capacity to deal with a range of different
scenarios. Even the direction of projected change, for example, in wind speed is
currently unclear and thus developing a system with in-built capacity to cope with a
range of possibilities is necessary. Although it would not, obviously, be possible to
consider every eventuality, sufficient flexibility to cope with reasonable changes
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would make the system more robust. Understanding the sensitivity of the system to
changes in different parameters is the first step in this process.
Broader drivers and interactions
Renewable energy planning
The decisions on locations/sizes of renewable energy developments tend to rest in a
negotiation between developer and local authority planning departments. The
developer will choose a site that has good resources, reasonably priced
infrastructure access and perhaps consider eliminating sites based on evidence for
extreme events, e.g. flooding. They will then approach the local authority for
planning permission and try to reach agreement on a specific site configuration. This
should, in theory, result in the lowest cost sites being developed most quickly.
However, the time-frame over which the resources at a site are considered in order
to calculate costs are short, relative to the consequences of slower changes in
climate.
Community development of renewables
The short-term risk associated with climate change is small. Changes in the long-term
mean resources are expected to occur on very large time-scales, and thus
investment risk, for example, by more vulnerable community developers, is not likely
to be impacted by this particular factor. In the case of wind power, interannual
variability in output is already known to be quite significant, and will be factored into
any sensible financial risk analysis. Beyond the 20-25 year expected lifetime of a
wind farm, more subtle changes associated with climate change can be reassessed
before further investment.
A factor that might be more significant is the impact of an increase in the shortterm variability of a site. This could lead to more extreme ‘good’ and ‘bad’ years in
terms of financial success, increasing investment risks for developers. This may be a
particular issue for small scale or community developments with only a single plant
in their portfolio with limited scope to diversify risk across different investments.
Demand interdependence
The close coupling of both renewable energy and demand to weather patterns
means that the impacts of climate change on each factor cannot be considered in
isolation. For example, increasing ambient temperatures in summer could result in a
greater requirement for space-cooling which, when combined with a reduced mean
wind resource, would require alternative generation. Solar power may be more
suitable for providing this energy, but the concurrent generation and demand
patterns would need to be studied to ascertain the precise gap and the ability of
solar to fill it. Such changes imply changes to overall capacity credits from renewable
technologies. While not a panacea, energy storage, in sufficient capacities, could
reduce the strength of the (already complex) relationship between demand and
output from renewables and provide the system with more flexibility.
Confidence in the science
Climate science and modelling
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In general, confidence in the output of climate models among qualified scientists is
very high, but a clear understanding of the uncertainties and sensitivities is needed
to reach this judgement. On temperature, there is agreement between models and a
significant association between carbon dioxide emission levels and predicted trends
in temperature change. The same level of confidence does not exist with respect to
other weather variables, however. In particular, surface-level wind speed is a difficult
parameter to model on a scale that is applicable to wind power generation. As
discussed in previous sections, different models give different results, and the
direction of change is inconsistent even within different runs of a single model. As
computing power increases, and consequently the spatial resolution of models
improves, higher confidence may be achieved.
An additional consideration in terms of confidence is the choice of emissions
scenarios and how they are applied in the models. The IPCC provide a set of
emissions scenarios for modellers that have been designed to reflect a range of
future possibilities for technology, economic growth and political and social opinion
(see (IPCC 2014). The differing socio-economic conditions assumed give rise to
different emissions levels and rates of stabilisation. The UKCP09 outputs which have
been drawn upon heavily in this article do attempt to capture a spectrum of
scenarios ranging from ‘low’ to ‘high’ emissions levels, but do only cover two of the
four IPCC ‘storylines’ for future conditions, and not all scenarios are captured in all of
the outputs (UKCP09 2012). The results of any climate modelling story should be
considered in the context of the plausibility and representativeness of the scenarios
used. The current generation of modelling is, however, still valuable in providing a
framework against which to test the resilience of renewable energy systems to
climate change. Considering the model outputs as possible future scenarios rather
than a deterministic future prediction allows testing of various aspects of the system
against a range of plausible future conditions.
Summary of confidence in specific impacts
Specific impact
Small changes
in mean annual
wind power
output
Volume Agreement
of
evidence
Medium
Medium
Impact
Comments
Low
The range of changes
suggested by many of the
models are relatively low and
will thus have a small impact
Decrease in
summer
hydropower
production
Medium
Medium
Low
Still a range of uncertainties
in the modelling but there
could be some reduction in
summer production
Increase in
winter
hydropower
production
Medium
Medium
Low
Dependent on ability of
scheme to utilise extra flow,
but could be some increase
in production
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Enhancement
of existing
north-south
solar
production
differences
Low
None
Low
Single study, scale of changes
very minor
Small changes
in mean annual
wave energy
production
Low
None
Low
Sea level rise
leading to
changes in tidal
energy
production
Low
None
Reduced wind
power due to
extreme high
winds (turbines
stop producing
under these
conditions)
Low
None
Low
Small risk of occurrence
within the ranges currently
predicted
Increased
failure of wind
turbines due to
extreme high
winds
Med
Low
Med
Some evidence but specific
impacts are difficult to
ascertain
Increased
failure of wind
turbines due to
blade icing in
extremely low
temperatures
Med
Med
Low
The occurrence of such
events is likely to remain very
low
Reduced access
to offshore
wind turbines
(and wave/tidal
energy devices)
due to
increased
storms
Low
None
Low
It is likely that adaptations to
maintenance strategies will
be possible in the event of
reduced access
Wave energy contributes
only a small amount to the
energy system, so impacts of
changes in output are
minimal
Unknown Not currently quantified, but
some evidence that sea-level
rise could change tidal flow
patterns
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Research gaps and priorities
Climatology and meteorology
Obviously, given the lack of confidence in the projections of future wind speeds, and
the clear intention to increase the use of wind power generation in future, research
on the physics, dynamics and modelling of wind conditions is critical. Increasing
understanding of this fundamental science will also drive improvements in
forecasting, which is imperative to assist with managing variability.
Wind models provide direct input to wave models, and thus improvements in the
skill of wind modelling will also have a positive impact on the success of wave
models. These are important not only for analysing wave energy generation
potential, but also understanding loading conditions, and reliability and accessibility
parameters for offshore wind turbines.
Engineering
The issue of adaptation is key to managing the impacts of climate change. It is
necessary to focus research on designing adaptable and resilient machines for future
conditions. The provision of increasingly reliable estimates for design and resource
parameters from the climate science community will allow machine designers to
factor climate change, but the range of uncertainties must be clearly communicated.
Considering the energy system as a whole, addressing the capacity of the system to
deal with progressive changes, and concentrating development on more ‘flexible’
solutions such as efficient storage technology and short-term balancing mechanisms,
would create a more robust infrastructure.
Policy and economics
The cost of climate change and the associated level of risk is currently only able to be
estimated. Combining the many levels of uncertainty within the climate data, the
engineering models and the economics is a complex task which has not been
sufficiently addressed as yet. Modelling future economic and policy decisions
requires the use of scenarios that effectively integrate many different influencing
factors, including climate change alongside issues such as regulation, societal and
political landscapes (which may also themselves be directly related to climate
change). All of these factors, including climate, are subject to large degrees of
uncertainty, making the task particularly difficult. Based on the existing models for
climate impacts on renewable energy, the influence of changes to specific climate
variables relating to renewable energy output will be relatively small in comparison
to some of the wider social and political factors which are key to investment and
development.
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References
Allan, Grant, Michelle Gilmartin, Peter McGregor, and Kim Swales. 2011. “Levelised
Costs of Wave and Tidal Energy in the UK: Cost Competitiveness and the
Importance of ‘banded’ Renewables Obligation Certificates.” Energy Policy 39
(1). Elsevier: 23–39. doi:10.1016/j.enpol.2010.08.029.
Bellarby, Jessica, Martin Wattenbach, Gill Tuck, Margaret J. Glendining, and Pete
Smith. 2010. “The Potential Distribution of Bioenergy Crops in the UK under
Present and Future Climate.” Biomass and Bioenergy 34 (12): 1935–45.
doi:10.1016/j.biombioe.2010.08.009.
Burnett, D. 2012. “Climate Change and Renewable Energy Portfolios”. University of
Edinburgh. http://hdl.handle.net/1842/6245.
Burnett, D., E. Barbour, and G. P. Harrision. 2014. “The UK Solar Energy Resource and
the Impact of Climate Change.” Solar Energy In Press.
Carter, D J T, and L Draper. 1988. “Has the North-East Atlantic Become Rougher.”
Nature.
Cradden, LucyC., GarethP. Harrison, and JohnP. Chick. 2012. “Will Climate Change
Impact on Wind Power Development in the UK?” Climatic Change 115 (3-4).
Springer Netherlands: 837–852 LA – English. doi:10.1007/s10584-012-0486-5.
Crook, Julia A, Laura A Jones, Piers M Forster, and Rolf Crook. 2011. “Climate Change
Impacts on Future Photovoltaic and Concentrated Solar Power Energy Output.”
Energy Environ. Sci. 4 (9). The Royal Society of Chemistry: 3101–9.
doi:10.1039/C1EE01495A.
DECC.
2012.
Electricity
Generation
Costs.
https://www.gov.uk/government/publications/decc-electricity-generationcosts-2013.
———. 2013a. Digest of United Kingdom Energy Statistics (DUKES). London.
https://www.gov.uk/government/uploads/system/uploads/attachment_data/fil
e/279523/DUKES_2013_published_version.pdf.
———.
2013b.
“RESTATS:
Electricity
https://restats.decc.gov.uk/cms/electricity-growth/.
Growth.”
Enercon. 2014. “Enercon - Control System.” http://www.enercon.de/en-en/754.htm.
Förster, Hannah, and Johan Lilliestam. 2010. “Modeling Thermoelectric Power
Generation in View of Climate Change.” Regional Environmental Change 10 (4).
Springer-Verlag: 327–338 LA – English. doi:10.1007/s10113-009-0104-x.
23
Lucy Cradden et al
Energy: Renewable Generation
Infrastructure Report Card
Gueymard, Christian A., and Stephen M. Wilcox. 2011. “Assessment of Spatial and
Temporal Variability in the US Solar Resource from Radiometric Measurements
and Predictions from Models Using Ground-Based or Satellite Data.” Solar
Energy 85 (5): 1068–84. doi:10.1016/j.solener.2011.02.030.
Harrison, G P, L C Cradden, and J P Chick. 2008. “Preliminary Assessment of Climate
Change Impacts on the UK Onshore Wind Energy Resource.” Energy Sources,
Part A: Recovery, Utilization, and Environmental Effects 30 (14-15): 1286–99.
doi:10.1080/15567030701839326.
Harrison, G P, and A R Wallace. 2005. “Sensitivity of Wave Energy to Climate
Change.” Energy Conversion, IEEE Transactions on 20 (4): 870–77.
doi:10.1109/TEC.2005.853753.
Harrison, Gareth P, and Robin A Wallace. 2005. “Climate Sensitivity of Marine
Energy.” IEEE Transactions on Energy Conversion 20 (4): 870–77.
Hatfield, J.L., and J.W. Singer. 2011. “Climate Change: What to Expect and How Will It
Affect Feedstock Production Options?” In Sustainable Biofuels for Advanced
Biofuels. Soil and Water Conservation Society, edited by R. Brown, D. Karlen,
and
D.
Johnson,
349–60.
http://www.swcs.org/documents/resources/Chapter_21__Hatfield__Climate_C
hang_6A49A597A0988.pdf.
Holthuijsen, Leo H. 2007. Waves in Oceanic and Coastal Waters. Cambridge
University Press.
International Energy Agency. 2010. Projected Costs of Generating Electricity 2010.
Projected
Costs
of
Generating
Electricity.
OECD
Publishing.
doi:10.1787/9789264084315-en.
IPCC.
2014.
“SCENARIO
PROCESS
FOR
AR5.”
http://sedac.ciesin.columbia.edu/ddc/ar5_scenario_process/.
AR5.
Jiang, Jing, and William Perrie. 2007. “The Impacts of Climate Change on Autumn
North Atlantic Midlatitude Cyclones.” Journal of Climate 20 (7). American
Meteorological Society: 1174–87. doi:10.1175/JCLI4058.1.
MacDonald, Mott. 2010. “UK Electricity Generation Costs Update.” Mott MacDonald,
no.
June.
http://scholar.google.com/scholar?hl=en&btnG=Search&q=intitle:UK+Electricit
y+Generation+Costs+Update#0.
Mackay, Edward B L, AbuBakr S Bahaj, and Peter G Challenor. 2010. “Uncertainty in
Wave Energy Resource Assessment. Part 2: Variability and Predictability.”
Renewable
Energy
35
(8).
Elsevier
Ltd:
1809–19.
doi:10.1016/j.renene.2009.10.027.
24
Lucy Cradden et al
Energy: Renewable Generation
Infrastructure Report Card
Manwell, J.F., J.G. McGowan, and A.L. Rogers. 2002. Wind Energy Explained: Theory,
Design and Application. Chichester: J. Wiley & Sons.
Mukheibir, Pierre. 2013. “Potential Consequences of Projected Climate Change
Impacts on Hydroelectricity Generation.” Climatic Change 121 (1). Springer
Netherlands: 67–78 LA – English. doi:10.1007/s10584-013-0890-5.
National Grid. 2014. UK Future Energy Scenarios. Warwick,
http://www2.nationalgrid.com/uk/industry-information/future-ofenergy/future-energy-scenarios/.
UK.
Neu, H J A. 1984. “Interannual Variations and Longer-Term Changes in the Sea State
of the North Atlantic from 1970 to 1982.” Journal of Geophysical Research 89
(4): 6397–6402.
Pan, Zaitao, Moti Segal, Raymond W Arritt, and Eugene S Takle. 2004. “On the
Potential Change in Solar Radiation over the US due to Increases of Atmospheric
Greenhouse
Gases.”
Renewable
Energy
29
(11):
1923–28.
doi:10.1016/j.renene.2003.11.013.
Perrie, Will, Jing Jiang, Zhenxia Long, Bechara Toulany, and Weiqing Zhang. 2004.
“NW Atlantic Wave Estimates and Climate Change.” In Eighth International
Workshop on Wave Forecast and Hindcast. North Shore, Hawaii.
Pickering, M.D., N.C. Wells, K.J. Horsburgh, and J.A.M. Green. 2012. “The Impact of
Future Sea-Level Rise on the European Shelf Tides.” Continental Shelf Research
35 (March): 1–15. doi:10.1016/j.csr.2011.11.011.
Pryor, S.C., and R.J. Barthelmie. 2010. “Climate Change Impacts on Wind Energy: A
Review.” Renewable and Sustainable Energy Reviews 14 (1): 430–37.
doi:10.1016/j.rser.2009.07.028.
Reeve, D E, Y Chen, S Pan, V Magar, D J Simmonds, and A Zacharioudaki. 2011. “An
Investigation of the Impacts of Climate Change on Wave Energy Generation: The
Wave Hub, Cornwall, UK.” Renewable Energy 36 (9): 2404–13.
doi:http://dx.doi.org/10.1016/j.renene.2011.02.020.
Sexton, David M. H., and James Murphy. 2010. UKCP09: Probabilistic Projections of
Wind
Speed.
http://ukclimateprojections.metoffice.gov.uk/media.jsp?mediaid=87876&filety
pe=pdf.
UKCP09. 2012. “UKCP09 Summary Table.” UK
http://ukclimateprojections.metoffice.gov.uk/22533.
Climate
Projections.
Vestas Wind Systems A/S. 2004. “Vestas V90-3.0 MW Product Brochure”. Rinkøbing:
Vestas.
25
Lucy Cradden et al
Energy: Renewable Generation
Infrastructure Report Card
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